Autor: |
Zuluaga, Juan, Castillo, Michael, Syal, Divya, Calle, Andres, Shaghaghi, Navid |
Předmět: |
|
Zdroj: |
AIP Conference Proceedings; 2024, Vol. 3034 Issue 1, p1-8, 8p |
Abstrakt: |
The prevalence of gaps and outliers within datasets presents substantial challenges, particularly in the realm of time series fore-casting and various other predictive machine learning (ML) tasks. This paper, introduces an effective technique for correcting gaps and outliers in data and validates the approach by applying it to datasets with outlier zones drawn from three diverse contexts. This innovative technique holds promising potential to enhance the performance of machine learning models by treating the data to alleviate the complications posed by these issues and in doing so contributes a valuable tool to the data science toolbox. [ABSTRACT FROM AUTHOR] |
Databáze: |
Complementary Index |
Externí odkaz: |
|